Enhancing stock market anomalies with machine learning

Author:

Azevedo VitorORCID,Hoegner Christopher

Abstract

AbstractWe examine the predictability of 299 capital market anomalies enhanced by 30 machine learning approaches and over 250 models in a dataset with more than 500 million firm-month anomaly observations. We find significant monthly (out-of-sample) returns of around 1.8–2.0%, and over 80% of the models yield returns equal to or larger than our linearly constructed baseline factor. For the best performing models, the risk-adjusted returns are significant across alternative asset pricing models, considering transaction costs with round-trip costs of up to 2% and including only anomalies after publication. Our results indicate that non-linear models can reveal market inefficiencies (mispricing) that are hard to conciliate with risk-based explanations.

Funder

Technische Universität Kaiserslautern

Publisher

Springer Science and Business Media LLC

Subject

Finance,General Business, Management and Accounting,Accounting

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